METHODS AND SYSTEMS FOR EFFICIENT AUTOMATED SYMBOL RECOGNITION

The current document is directed to methods and systems for identifying symbols corresponding to symbol images in a scanned-document image or other text-containing image, with the symbols corresponding to Chinese or Japanese characters, to Korean morpho-syllabic blocks, or to symbols of other languages that use a large number of symbols for writing and printing. In one implementation, the methods and systems to which the current document is directed carry out an initial processing step on one or more scanned images to identify a subset of the total number of symbols frequently used in the scanned document image or images. One or more lists of graphemes for the language of the text are then ordered in most-likely-occurring to least-likely-occurring order to facilitate a second optical-character-recognition step in which symbol images extracted from the one or more scanned-document images are associated with one or more graphemes most likely to correspond to the scanned symbol image.

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Description
CROSS REFERENCE TO RELATED APPLICATIONS

This application claims the benefit of priority under 35 USC 119 to Russian Patent Application No. 2014103152, filed Jan. 1, 2014; the disclosure of which is incorporated by reference.

TECHNICAL FIELD

The current application is directed to automated processing of scanned-document images and other text-containing images and, in particular, to methods and systems that efficiently convert symbol images extracted from scanned documents to digital encodings of the corresponding symbols.

BACKGROUND

Printed, typewritten, and handwritten documents have long been used for recording and storing information. Despite current trends towards paperless offices, printed documents continue to be widely used in commercial, institutional, and home environments. With the development of modern computer systems, the creation, storage, retrieval, and transmission of electronic documents has evolved, in parallel with continued use of printed documents, into an extremely efficient and cost-effective alternative information-recording and information-storage medium. Because of overwhelming advantages in efficiency and cost effectiveness enjoyed by modern electronic-document-based information storage and information transactions, printed documents are routinely converted into electronic documents by various methods and systems, including conversion of printed documents into digital scanned-document images using electro-optico-mechanical scanning devices, digital cameras, and other devices and systems followed by automated processing of the scanned-document images to produce electronic documents encoded according to one or more of various different electronic-document-encoding standards. As one example, it is now possible to employ a desktop scanner and sophisticated optical-character-recognition (“OCR”) control programs that control a personal computer to convert a printed-paper document into a corresponding electronic document that can be displayed and edited using a word-processing program.

While modern OCR systems have advanced to the point that complex printed documents that include pictures, frames, line boundaries, and other non-text elements as well as text symbols of any of many common alphabet-based languages can be automatically converted to electronic documents, challenges remain with respect to conversion of printed documents containing Chinese and Japanese characters or Korean morpho-syllabic blocks.

SUMMARY

The current document is directed to methods and systems for identifying symbols corresponding to symbol images in a scanned-document image or other text-containing image, with the symbols corresponding to Chinese or Japanese characters, to Korean morpho-syllabic blocks, or to symbols of other languages that use a large number of symbols for writing and printing. In one implementation, the methods and systems to which the current document is directed carry out an initial processing step on one or more scanned images to identify a subset of the total number of symbols frequently used in the scanned document image or images. One or more lists of graphemes for the language of the text are then ordered in most-likely-occurring to least-likely-occurring order to facilitate a second optical-character-recognition step in which symbol images extracted from the one or more scanned-document images are associated with one or more graphemes most likely to correspond to the scanned symbol image.

BRIEF DESCRIPTION OF THE DRAWINGS

FIGS. 1A-B illustrate a printed document.

FIG. 2 illustrates a typical desktop scanner and personal computer that are together used to convert printed documents into digitally encoded electronic documents stored in mass-storage devices and/or electronic memories.

FIG. 3 illustrates operation of the optical components of the desktop scanner shown in FIG. 2.

FIG. 4 provides a general architectural diagram for various types of computers and other processor-controlled devices.

FIG. 5 illustrates digital representation of a scanned document.

FIG. 6 shows a hypothetical symbol set.

FIGS. 7A-C illustrate various aspects of symbol sets for natural languages.

FIGS. 8A-B illustrate parameters and parameter values computed with respect to symbol images.

FIG. 9 shows a table of parameter values computed for all of the symbols in the example symbol set shown in FIG. 6.

FIG. 10 illustrates a three-dimensional plot of the symbols of the example set of symbols shown in FIG. 6 within a three-dimensional space, where the dimensions represent values of each of three different parameters.

FIGS. 11A-B show the symbols contained in each of the clusters represented by points in the three-dimensional space shown in FIG. 10.

FIG. 12A illustrates a different parameter that can be used, in combination with the three parameters corresponding to dimensions in the three-dimensional parameter space shown in FIG. 10, to fully distinguish each of the symbols in cluster 8.

FIG. 12B illustrates the value of the additional parameter, discussed with reference to FIG. 12A, for each of the symbols in cluster 8.

FIG. 13 illustrates a small text-containing image that has been initially processed, by an OCR system, to produce a grid of symbol windows 1300, each containing a symbol image.

FIG. 14 illustrates a general approach to processing of the grid of symbol windows, shown in FIG. 13.

FIG. 15 illustrates a first approach to implementing the routine “process” (1404 in FIG. 14).

FIGS. 16A-B illustrate a second implementation of the routine “process” (1404 in FIG. 14).

FIG. 17 illustrates a third implementation of the routine “process,” discussed in the previous subsection, using the same illustration and pseudocode conventions used in the previous subsection.

FIG. 18 illustrates data structures that provide for clustering and preprocessing in one implementation of an OCR system that incorporates the general third implementation or the routine “process,” described above.

FIGS. 19A-H illustrate preprocessing of a symbol image using the data structures discussed above with reference to FIG. 18.

DETAILED DESCRIPTION

The current document is directed to methods and systems that efficiently match symbols of a language to symbol images extracted from one or more scanned-document images or other text-containing images. The methods and systems employ a first pass over the symbol images to identify a subset of the graphemes of the language that most likely occur within the text contained in the one or more scanned-document images or other text-containing images. The symbols of the language are organized into one or more clusters of related symbols and graphemes, and the graphemes within each cluster are sorted by likelihood of occurrence within the one or more text-containing images. In a second step, symbol images extracted from the one or more text-containing images are then matched to one or more symbols of the language that they most likely represent. In the following discussion, scanned-document images and electronic documents are first introduced. A second subsection discusses certain currently available OCR methods and systems. A third subsection includes a detailed description of the methods and systems to which the current document is directed.

Scanned Document Images and Electronic Documents

FIGS. 1A-B illustrates a printed document. FIG. 1A shows the original document with Japanese text. The printed document 100 includes a photograph 102 and five different text-containing regions 104-108 that include Japanese characters. This is an example document used in the following discussion of the method and systems for sense-orientation determination to which the current application is directed. The Japanese text may be written in left-to-right fashion, along horizontal rows, as English is written, but may alternatively be written in top-down fashion within vertical columns. For example, region 107 is clearly written vertically while text block 108 includes text written in horizontal rows. FIG. 1B shows the printed document illustrated in FIG. 1A translated into English.

Printed documents can be converted into digitally encoded, scanned-document images by various means, including electro-optico-mechanical scanning devices and digital cameras. FIG. 2 illustrates a typical desktop scanner and personal computer that are together used to convert printed documents into digitally encoded electronic documents stored in mass-storage devices and/or electronic memories. The desktop scanning device 202 includes a transparent glass bed 204 onto which a document is placed, face down 206. Activation of the scanner produces a digitally encoded scanned-document image which may be transmitted to the personal computer (“PC”) 208 for storage in a mass-storage device. A scanned-document-image-rendering program may render the digitally encoded scanned-document image for display 210 on a PC display device 212.

FIG. 3 illustrates operation of the optical components of the desktop scanner shown in FIG. 2. The optical components in this charge-coupled-device (“CCD”) scanner reside below the transparent glass bed 204. A laterally translatable bright-light source 302 illuminates a portion of the document being scanned 304 which, in turn, re-emits and reflects light downward. The re-emitted and reflected light is reflected by a laterally translatable mirror 306 to a stationary minor 308, which reflects the emitted light onto an array of CCD elements 310 that generate electrical signals proportional to the intensity of the light falling on each of the CCD elements. Color scanners may include three separate rows or arrays of CCD elements with red, green, and blue filters. The laterally translatable bright-light source and laterally translatable mirror move together along a document to produce a scanned-document image. Another type of scanner is referred to as a “contact-image-sensor scanner” (“CIS scanner”). In a CIS scanner, moving colored light-emitting diodes (“LEDs”) provide document illumination, with light reflected from the LEDs sensed by a photodiode array that moves together with the colored light-emitting diodes.

FIG. 4 provides a general architectural diagram for various types of computers and other processor-controlled devices. The high-level architectural diagram may describe a modern computer system, such as the PC in FIG. 2, in which scanned-document-image-rendering programs and optical-character-recognition programs are stored in mass-storage devices for transfer to electronic memory and execution by one or more processors to transform the computer system into a specialized optical-character-recognition system. The computer system contains one or multiple central processing units (“CPUs”) 402-405, one or more electronic memories 408 interconnected with the CPUs by a CPU/memory-subsystem bus 410 or multiple busses, a first bridge 412 that interconnects the CPU/memory-subsystem bus 410 with additional busses 414 and 416, or other types of high-speed interconnection media, including multiple, high-speed serial interconnects. These busses or serial interconnections, in turn, connect the CPUs and memory with specialized processors, such as a graphics processor 418, and with one or more additional bridges 420, which are interconnected with high-speed serial links or with multiple controllers 422-427, such as controller 427, that provide access to various different types of mass-storage devices 428, electronic displays, input devices, and other such components, subcomponents, and computational resources.

FIG. 5 illustrates digital representation of a scanned document. In FIG. 5, a small disk-shaped portion 502 of the example printed document 504 is shown magnified 506. A corresponding portion of the digitally encoded scanned-document image 508 is also represented in FIG. 5. The digitally encoded scanned document includes data that represents a two-dimensional array of pixel-value encodings. In the representation 508, each cell of a grid below the characters, such as cell 509, represents a square matrix of pixels. A small portion 510 of the grid is shown at even higher magnification, 512 in FIG. 5, at which magnification the individual pixels are represented as matrix elements, such as matrix element 514. At this level of magnification, the edges of the characters appear jagged, since the pixel is the smallest granularity element that can be controlled to emit specified intensities of light. In a digitally encoded scanned-document file, each pixel is represented by a fixed number of bits, with the pixel encodings arranged sequentially. Header information included in the file indicates the type of pixel encoding, dimensions of the scanned image, and other information that allows a digitally encoded scanned-document-image rendering program to extract the pixel encodings and issue commands to a display device or printer to reproduce the pixel encodings in a two-dimensional representation of the original document. Scanned-document images digitally encoded in monochromatic grayscale commonly use 8-bit or 16-bit pixel encodings, while color scanned-document images may use 24 bits or more to encode each pixel according to various different color-encoding standards. As one example, the commonly used RGB standard employs three 8-bit values encoded within a 24-bit value to represent the intensity of red, green, and blue light. Thus, a digitally encoded scanned image generally represents a document in the same fashion that visual scenes are represented in digital photographs. Pixel encodings represent light intensity in particular, tiny regions of the image and, for colored images, additionally represent a color. There is no indication, in a digitally encoded scanned-document image, of the meaning of the pixels encodings, such as indications that a small two-dimensional area of contiguous pixels represents a text character. Sub-images corresponding to symbol images can be processed to produce a bit for the symbol image, in which bits with value “1” correspond to the symbol image and bits with value “0” correspond to background. Bit maps are convenient for representing both extracted symbol images as well as patterns used by an OCR system to recognize particular symbols.

By contrast, a typical electronic document produced by a word-processing program contains various types of line-drawing commands, references to image representations, such as digitally encoded photographs, and digitally encoded text characters. One commonly used encoding standard for text characters is the Unicode standard. The Unicode standard commonly uses 8-bit bytes for encoding American Standard Code for Information Exchange (“ASCII”) characters and 16-bit words for encoding symbols and characters of many languages, including Japanese, Mandarin, and other non-alphabetic-character-based languages. A large part of the computational work carried out by an OCR program is to recognize images of text characters in a digitally encoded scanned-document image and convert the images of characters into corresponding Unicode encodings. Clearly, encoding text characters in Unicode takes far less storage space than storing pixilated images of text characters. Furthermore, Unicode-encoded text characters can be edited, reformatted into different fonts, and processed in many additional ways by word-processing programs while digitally encoded scanned-document images can only be modified through specialized image-editing programs.

In an initial phase of scanned-document-image-to-electronic-document conversion, a printed document, such as the example document 100 shown in FIG. 1, is analyzed to determine various different regions within the document. In many cases, the regions may be logically ordered as a hierarchical acyclic tree, with the root of the tree representing the document as a whole, intermediate nodes of the tree representing regions containing smaller regions, and leaf nodes representing the smallest identified regions. The tree representing the document includes a root node corresponding to the document as a whole and six leaf nodes each corresponding to one of the identified regions. The regions can be identified using a variety of different techniques, including many different types of statistical analyses of the distributions of pixel encodings, or pixel values, over the area of the image. For example, in a color document, a photograph may exhibit a larger variation in color over the area of the photograph as well as higher-frequency variations in pixel-intensity values than regions containing text.

Once an initial phase of analysis has determined the various different regions of a scanned-document image, those regions likely to contain text are further processed by OCR routines in order to identify text characters and convert the text characters into Unicode or some other character-encoding standard. In order for the OCR routines to process text-containing regions, an initial orientation of the text-containing region is determined so that various pattern-matching methods can be efficiently employed by the OCR routines to identify text characters. It should be noted that the images of documents may not be properly aligned within scanned-document images due to positioning of the document on a scanner or other image-generating device, due to non-standard orientations of text-containing regions within a document, and for other reasons. The text-containing regions are then partitioned into sub-images that contain individual characters or symbols, and these sub-images are then generally scaled and oriented, and the symbol images are centered within the sub-image to facilitate subsequent automated recognition of the symbols that correspond to the symbol images.

Currently Available OCR Methods and Systems

In order to provide a concrete discussion of various optical-character-recognition techniques, an example symbol set for a hypothetical language is used. FIG. 6 shows a hypothetical symbol set. In FIG. 6, 48 different symbols are shown within each of 48 rectangular regions, such as rectangular region 602. In the right-hard corner of each rectangular region, a numerical index or code for the symbol is shown inscribed within a circle, such as the index or code “1” 604 corresponding to the first symbol 606 shown in rectangular region 602. The example is chosen for illustration of both currently existing OCR methods and systems as well as new OCR methods and systems disclosed in the current document. In fact, for character-based written languages, including Chinese and Japanese, there may be many tens of thousands of different symbols used for printing and writing the language.

FIGS. 7A-B illustrate various aspects of symbol sets for natural languages. In FIG. 7A, a column of different forms of the eighth symbol in the symbol set shown in FIG. 6 is provided. The eighth symbol 702 of the symbol set shown in FIG. 6 is followed, in a column 704, by different forms of the symbol in different styles of text. In many natural languages, there may be many different text styles and alternative written forms for a given symbol.

FIG. 7B shows various different concepts related to symbols of a natural language. In FIG. 7B, a particular symbol of a natural language is represented by node 710 in graph 712. A particular symbol may have numerous different general written or printed forms. For OCR purposes, each of these different general forms constitutes a grapheme. In certain cases, a particular symbol may comprise two or more graphemes. For example, Chinese characters may comprise a combination of two or more graphemes, each of which occurs in additional characters. The Korean language is actually alphabetic, with Korean morpho-syllabic blocks containing a number of alphabetic characters in different positions. Thus, a Korean morpho-syllabic block may represent a higher-level symbol composed of multiple grapheme components. For symbol 710 shown in FIG. 7B, there are six different graphemes 714-719. There are, in addition, one or more different printed or written renderings of a grapheme, each rendering represented by a pattern. In FIG. 7B, graphemes 714 and 716 each has two alternative renderings represented by patterns 720 and 721 and 723-724, respectively. Graphemes 715 and 717-719 are each associated with a single pattern, patterns 722 and 725-727, respectively. For example, the eighth symbol of the example symbol set, shown in FIG. 6, may be associated with three graphemes, including one grapheme that encompasses renderings 702, 724, 725, and 726, a second grapheme that encompasses renderings 728 and 730, and a third grapheme that encompasses rendering 732. In this case, the first grapheme has straight horizontal members, the second grapheme has horizontal members with right-hand, short vertical members, and the third grapheme includes curved, rather than straight, features. Alternatively, all of the renderings of the eighth symbol 702, 728, 724, 732, 725, 726, and 730 may be represented as patterns associated with a single grapheme for the eighth symbol. To a certain extent, the choice of graphemes is somewhat arbitrary. In certain types of character-based languages, there may be many thousands of different graphemes. Patterns can be thought of as alternative renderings or images, and may be represented by a set of parameter/parameter-value pairs, as discussed below.

In fact, although the relationships between symbols, graphemes, and patterns is shown, in FIG. 7B, as being strictly hierarchical, with each grapheme related to a single, particular parent symbol, the actual relationships may not be so simply structured. FIG. 7C illustrates a slightly more complex set of relationships, in which two symbols 730 and 732 are both parents of two different graphemes 734 and 736. As one example, the English-language symbols “o,” the lower-case letter, “O,” the upper-case letter, “0,” the digit zero, and “°”, the symbol for degree, may all be associated with a circle-like grapheme. The relationships might alternatively be represented as graphs or networks. In certain cases, graphemes, rather than, or in addition to, symbols might be shown at the highest levels within the representation. In essence, there is a significant degree of arbitrariness in the symbols, graphemes, and patterns identified for a particular language and the relationships between them.

FIGS. 8A-B illustrate parameters and parameter values computed with respect to symbol images. Note that the phrase “symbol image” may describe a printed, written, or displayed rendering of a symbol or grapheme. In the following example, parameters and parameter values are discussed with respect to images of symbols, but, in an actual real-language context, the parameters and parameter values are often used to characterize and represent images of graphemes. FIG. 8A shows a rectangular symbol image 802 extracted from a text-containing image that includes an image of the 22nd symbol in the example symbol set shown in FIG. 6. FIG. 8B includes a rectangular symbol image 804 extracted from the text-containing image corresponding to the 48th symbol in the example symbol set shown in FIG. 6. In printing and writing of the hypothetical language corresponding to the example symbol set, the symbols are centered within rectangular symbol areas. When this is not the case, initial processing steps carried out by OCR systems may reorient, rescale, and reposition extracted symbol images with respect to a background area in order to normalize extracted symbol images for subsequent processing steps.

FIG. 8A illustrates three different parameters that may be used by an OCR system to characterize symbols. Note that the area of the symbol image, or symbol window, is characterized by a vertical symbol-window dimension 806, abbreviated “vw”) and a horizontal symbol-window dimension 808, referred to as “hw.” A first parameter is the longest horizontal continuous line segment within the symbol image, referred to as “h” 810. This is the longest sequence of contiguous dark pixels within the generally white-pixel background of the symbol window. A second parameter is the longest vertical continuous line segment 812 within the symbol image. A third parameter is the percentage of pixels in the symbol window corresponding to the symbol image, in the current case, the percentage of black pixels within the generally white symbol window. In all three cases, parameter values can be straightforwardly computed once a bitmap for the symbol window has been generated. FIG. 8B shows two additional parameters. The first parameter is the number of horizontal, internal white-space stripes within the symbol image, with the symbol represented by the symbol image shown in FIG. 8B having a single horizontal internal white-space stripe 816. A second parameter is the number of vertical internal white-space stripes within the symbol image. For the 48th symbol of the symbol set, represented by the image within the symbol window 804 shown in FIG. 8B, there is a single vertical internal white-space stripe 818. The number of horizontal white-space stripes is referred to as “hs” and the number of internal vertical white-space stripes is referred to as “vs.”

FIG. 9 shows a table of parameter values computed for all of the symbols in the example symbol set shown in FIG. 6. In the table 902 shown in FIG. 9, calculated parameter values for a particular symbol are shown in each row of the table. The parameters include: (1) the longest horizontal continuous line segment relative to the symbol window,

h hw ,

904; (2) the longest vertical continuous line segment relative to the vertical symbol-window dimension

v vw ,

906; (3) the percent total area corresponding to the symbol image, or black space, b, 908; (4) the number of internal vertical stripes, vs, 910; (5) the number of horizontal internal stripes, hs, 912; (6) the sum of the number of internal vertical stripes and horizontal stripes, vs+hs, 914; and (7) the ratio of the longest vertical line segment to the longest horizontal line segment,

v h ,

916. Thus, considering the first row 920 of table 902 in FIG. 9, the first symbol of the symbol set (606 in FIG. 6) is a vertical bar, and thus, as would be expected, the numeric value of

v vw ,

0.6, is significantly greater than the numeric value of

h hw ,

0.2. Symbol 606 represents only 12 percent of the entire symbol window 602. There are no internal horizontal or vertical white spaces within symbol 606, and thus vs, hs, and vs+hs are all 0. The ratio

v h

is 3. Because the example symbols are all relatively simple and block-like, there are relatively few different values for each of the parameters in table 902.

Despite the fact that each of the parameters discussed above with reference to FIG. 9 have only relatively few different parameters values with respect to the 48 example characters, only three of the parameters are sufficient to partition the example characters into 18 partitions, or clusters. FIG. 10 illustrates a three-dimensional plot of the symbols of the example set of symbols shown in FIG. 6 within a three-dimensional space, where the dimensions represent values of each of three different parameters. In FIG. 10, a first horizontal axis 1002 represents the parameter

v h

(916 in FIG. 9), a second horizontal axis 1004 represents the parameter vs+hs (914 in FIG. 9), and a third, vertical axis 1006 represents the parameter b (908 in FIG. 9). There are 18 different plotted points, such as plotted point 1008, each shown as a small darkened disk, with the vertical projection of the point down to the horizontal plane that includes axes 1002 and 1004 represented by a vertical dashed line, such as vertical dashed line 1010 connecting point 1008 to its projection on the horizontal plane 1012. The code or sequence number for the symbols that map to a particular point are shown within brackets to the right of the point. For example, symbols 14, 20, and 37 (1014) all map to point 1016 with coordinates (1, 0, 0.32) with respect to axes 1002, 1004, and 1006. Each point is associated with a partition or cluster number in a small rectangle to the left of the point. For example, point 1016 is associated with cluster number “14” 1018. FIGS. 11A-B show the symbols contained in each of the clusters represented by points in the three-dimensional space shown in FIG. 10. As can be readily observed from the symbol contents of these clusters, or partitions, the three parameters employed to distribute the symbols within the three-dimensional space shown in FIG. 10 are actually effective in partitioning the 48 example symbols into related sets of symbols.

Additional parameters can be used in order to uniquely distinguish each symbol within each cluster or partition. Consider, for example, cluster 8 (1102) shown in FIG. 11A. This cluster of symbols includes four angular, “L”-like symbols with four-fold rotational variations have symbol codes 26, 32, 38, and 44, as well as the “T”-like symbol with symbol code 43 and the cross-sign-like symbol with symbol code 45. FIG. 12A illustrates a different parameter that can be used, in combination with the three parameters corresponding to dimensions in the three-dimensional parameter space shown in FIG. 10, to fully distinguish each of the symbols in cluster 8. As shown in the symbol window 1202 in FIG. 12A, the symbol window is divided into four quadrants Q1 1204, Q2 1205, Q3 1206, and Q4 1207. The number of units of area within the quadrant occupied by the symbol image is then computed and shown adjacent to the quadrant. For example, 13.5 units of area 1210 are occupied by the portion of the symbol image in quadrant Q1 1204. These values for the number of units of area within each quadrant are then assigned to the variables Q1, Q2, Q3, and Q4. Thus, in the example shown in FIG. 12A, the variable Q1 is assigned the value 13.5, the variable Q2 is assigned the value 0, the variable Q3 is assigned the value 18, and the variable Q4 is assigned the value 13.5. Then, the value for the new parameter p is computed according to the small pseudocode snippet 1212 shown in FIG. 12A below the symbol window. For example, when all four variables Q1, Q2, Q3, and Q4 have the same value, then the parameter p is assigned the value 0 (1214), indicating a four-fold symmetry in the symbol window with respect to the number of units of area occupied by the symbol image. FIG. 12B illustrates the value of the additional parameter, discussed with reference to FIG. 12A, for each of the symbols in cluster 8. As can be seen from the parameters values associated with the symbols in FIG. 12B, the new parameter, discussed above with reference to FIG. 12A, has a different value for each of the six symbols in cluster 8. In other words, a combination of the three parameters used to create the three-dimensional plot shown in FIG. 10 and the additional parameter discussed above with reference to FIG. 12A can be used together to uniquely identify all of the symbols in cluster 8.

FIG. 13 illustrates a small text-containing image that has been initially processed, by an OCR system, to produce a grid of symbol windows 1300, each containing a symbol image. Only the grid of symbol windows 1300 is shown in FIG. 13, without the symbol images contained within them, for clarity of illustration. The symbol windows are indexed by a vertical index i 1302 and a horizontal index j 1304. In this example, discussed below, for the sake of simplicity, symbols and symbol images are discussed, rather than graphemes. In the example, it is assumed that there is a one-to-one correspondence between symbols, graphemes, and patterns used to identify symbol images in symbol windows. In addition to the grid of symbol windows 1300, FIG. 13 also shows an array or matrix 1306 of patterns, each cell of which, such as cell 1308, including a pattern. Patterns are represented a sets of parameter/parameter-value pairs, with parameters chosen to uniquely distinguish symbol images, as discussed above with reference to FIGS. 8A-12B. FIG. 13 also shows an array of parameters 1310, illustrated as a set containing pairs of braces, such as the pair of braces 1312. Each pair of braces represents the functionality that computes a parameter value for a parameter with respect to a symbol image.

FIG. 14 illustrates a general approach to processing of the grid of symbol windows, shown in FIG. 13. At the highest level, processing can be considered to be a nested for-loop 1402 in which a routine “process” 1404 is called to analyze each symbol window 1406 in order to produce a corresponding symbol code 1408. In other words, the grid of symbol windows is represented, in the pseudocode example, as the two-dimensional array “page_of_text,” and OCR processing generates a two-dimensional array of symbol codes “processed_text” from the two-dimensional array of symbol windows “page_of_text.” In FIG. 14, curved arrows, such as curved arrow 1410, are used to show the traversal of the first row of the two-dimensional array, or grid, of symbol windows 1300 and horizontal arrows, such as arrow 1412, illustrate processing of the subsequent rows by for-loop 1402. In other words, the grid of symbol windows 1300 is traversed according to a traversal path and each symbol window in the grid is separately processed to produce a corresponding symbol code.

FIG. 15 illustrates a first approach to implementing the routine “process” (1404 in FIG. 14). A symbol image within a symbol window 1502 is input to the routine “process.” The routine “process” computes parameter values p1-p8 for eight different parameters used in the example to characterize symbol images by calling a routine “parameterize,” as shown by the eight calls to this routine 1504 in FIG. 15. The routine “parameterize” receives, as arguments, the symbol image and an integer indicating for which parameter to compute a parameter value and returns the computed parameter value. The parameter values are stored in an array of parameter values “p_values.” Then, as shown by curved arrows, such as curved arrow 1506, the routine “process” traverses all of the patterns 1508 corresponding to symbols of the language, comparing the computed parameter values for the symbol image stored in the array “p_values” to precomputed parameter values for each pattern, as shown in the illustration of the comparison operation 1510 in FIG. 15. The pattern that best matches the computed parameters for the symbol image is chosen as the matching pattern, and the symbol code corresponding to that pattern is returned as the return value of the routine “process.” Pseudocode for this first implementation of the routine “process” is also shown in FIG. 15 as pseudocode example 1512. In a first for-loop 1514, the values for the parameters with respect to the input symbol s are computed. Then, in the outer for-loop 1516 of a set of nested for-loops, each pattern in an array or vector of patterns 1508 is considered, the traversal of the array indicated by curved arrows, such as curved arrow 1506. In an inner for-loop 1518, a routine “compare” is called to compare each computed parameter value for the symbol image to a corresponding precomputed parameter value for the pattern, with the sum of the results of the comparisons accumulated in a local variable t. The highest accumulated comparison value is stored in a local variable score and the index of the pattern that most closely matches the symbol image within the input symbol window is stored in a variable p 1520. The symbol code associated with the pattern p is returned as the result of the routine “process” 1520.

Finally, in FIG. 15, a rough characterization of the computational complexity for the first implementation of the routine “process” 1522 is shown. The number of symbol windows in the text-containing image is N=i×j. In the current example, N=357. Of course, the number of symbol images to be processed depends on the type of document and number of document images as well as on the language and other parameters. However, in general, N varies from tens to hundreds of symbol images per document image. The number of patterns against which symbol images are matched is represented by P. For many alphabetic languages, including most European languages, the number of patterns may be relatively small, generally some relatively small multiple of the number of characters in the alphabet. However, for languages such as Chinese, Japanese, and Korean, the number of patterns may vary from tens of thousands to hundreds of thousands. Thus, for processing such languages, P is much larger than N. The number of parameters used to characterize each symbol image and pattern is represented as R. The overall computational complexity is therefore estimated as NPR. The factor N comes from the outer nested for-loops shown in FIG. 14. The factors PR come from the nested for-loops 1516 and 1518 in the implementation of the routine “process” 1512 shown in FIG. 15. In other words, the routine “process” is called once for each of N symbol images, and each invocation or call to the routine “process” involves R comparisons for each of P patterns. The initial parameter-value computation is considered a constant overhead, in this analysis. There are many possible ways for improving the implementation illustrated in FIG. 15. As one example, the comparison operation may consider only a subset of parameters of the total number of parameters needed to uniquely characterize a symbol image with respect to a particular pattern. Thus, an average number of parameter comparisons

R r

may be needed, rather than R comparisons. Additionally, rather than comparing each symbol image with each pattern, the symbol images may be traversed until a pattern that produces a comparison score above some relatively high threshold is found. In this case, the number of patterns that are compared in each symbol image may be

P p

rather than P. But, using these improvements, the computational complexity is nonetheless proportional to some generally large fraction of NPR.

FIGS. 16A-B illustrate a second implementation of the routine “process” (1404 in FIG. 14). In the second implementation, the routine “process” also receives a symbol image 1602 as input. However, in this implementation, the patterns are grouped together into clusters, such as the clusters discussed above with reference to FIGS. 11A-B. The routine “process” computes a sufficient number of parameter values 1604 in order to traverse the clusters of patterns 1606 to identify the most likely matching cluster. Thus, a relatively modest comparison operation 1608 is initially used to select the best pattern cluster. Then, the patterns 1610 within the selected pattern cluster 1611 are traversed using a second, modest comparison operation 1612 that involves some additional number of parameter values 1614 needed to distinguish the best pattern from the relatively small number of patterns 1610 contained in the pattern cluster. Pseudocode for the second implementation of the routine “process” is provided in FIG. 16B. In a first nested for-loop 1620, the most likely or best pattern cluster is selected from among the pattern clusters and in a second nested for-loop 1622, the best pattern from among the patterns within the selected cluster is identified. The initial set of parameters used for determining the best cluster is computed in for-loop 1624 and the additional parameters needed to select a pattern from among the patterns of the selected cluster are computed in the for-loop 1626. FIG. 16B also indicates a rough estimate of the computational complexity for the second implementation of the routine “process” 1630. As indicated, the estimate for the computational complexity for this second implementation of the routine “process” is:


N(CR1+P′R2),

where the number of symbols on page=N;

number of clusters=C;

number of patterns/cluster=P;

number of initial parameters=R;

number of additional parameters=R2.

Because P′ is generally far smaller than P, and because C is even smaller still, the computational complexity for the second implementation of the routine “process” is quite favorable compared to the computational complexity for the first implementation of the routine “process.”

Another approach to speeding up the first implementation of the routine “process,” discussed above with reference to FIG. 15, is to sort the patterns in the vector or array of patterns so that the most likely patterns corresponding to the most frequently occurring symbols will be first encountered while traversing the vector or array of patterns. When the search for a matching pattern is truncated by finding a pattern with a comparison score greater than some threshold value, and when the patterns are sorted by a frequency of occurrence reflective of the frequency of occurrence of symbols in the text-containing image that is being processed, a significant decrease in computational complexity is obtained. However, the frequency of occurrence of symbols in particular text-containing images may vary enormously depending on the type of document or page that was scanned to produce the image, and is unknown prior to OCR processing. A sorting of the patterns that produces a significant decrease in computational complexity for one type of document may, for another type of document, significantly increase the computational complexity. For example, an overall statistical analysis of all different types of text documents in a particular language, including novels, advertisements, textbooks, and other such documents, may produce a general frequency-of-occurrence-of-symbols sorting of patterns. However, certain documents and specialized fields may have an entirely different set of frequencies of occurrence of symbols. In this case, for the documents of the particular field, the most frequently occurring characters may end up towards the end of the traversal path through the vector or matrix of patterns sorted according to the general frequency-of-occurrence-of-symbols sorting of patterns. The second implementation of the routine “process,” discussed above with reference to FIGS. 16A-B, generally produces a significant decrease in computational complexity and corresponding increase in processing speeds. In general, a much smaller number of comparisons are needed in order to find a matching pattern for each symbol image. However, the second implementation is associated with a potentially serious problem in that, should the first nested for-loop that selects the cluster fail, then the routine “process” cannot possibly find the correct matching symbol. The correct matching symbol, in that case, is in a different cluster that is never analyzed in the second nested for-loop. While the examples of symbol sets and clusters provided above are relatively simple, as are the parameters used to characterize them, for the languages such as Chinese and Japanese, the task is far more complex and far more prone to error due to printing imperfections, document damage, and various types of errors that arise in scanning and initial OCR processing steps. Therefore, the chance of improperly choosing a cluster in such real-world problem domains is significant.

Methods and Systems to Which the Current Document is Directed

FIG. 17 illustrates a third implementation of the routine “process,” discussed in the previous subsection, using the same illustration and pseudocode conventions used in the previous subsection. The third implementation of the routine “process” represents a very general description of one implementation of the methods and systems to which the current document is directed.

As shown in FIG. 17, the third implementation of the routine “process” uses an additional data structure 1702 referred to as “votes.” The votes data structure includes an integer value for each pattern. This data structure is initialized to contain all zero values for all patterns. Then, in a first preprocessing step represented by the doubly nested for-loop 1704 in FIG. 17, a new set of clusters is allocated for each symbol image in the text-containing document 1300 and the patterns within the clusters are ordered based on votes collected within the votes data structure. In other words, the patterns are ordered within the newly allocated set or list of clusters so that those patterns most likely to match the currently considered symbol image are first encountered in a traversal of the patterns. The parameter values for a set of comparison parameters computed for the currently considered symbol image are compared to the parameter values for each pattern, and votes are cast for those patterns that, based on the comparison, have a similarity to the symbol image above a threshold similarity. In certain implementations, the clusters within the set of clusters may also be sorted by cumulative similarity of the patterns within them to the symbol image.

After the preprocessing step carried out in the nested for-loops 1704, each symbol image is processed by a third implementation of the routine “process.” Pseudocode for the third implementation of the routine “process” 1710 is provided in FIG. 17. In this implementation, the routine “process” receives a symbol image and the set of clusters prepared for the symbol image in the preprocessing step and stored in the array NxtLvlClusters and returns a pointer to a list of potentially matching patterns. In a first for-loop 1712, parameter values for parameters used to identify patterns matching the received symbol image are computed. In a second outer for-loop 1714, each cluster is considered until the list of potentially matching patterns is full. In other words, when a maximum number of potentially matching patterns has been found, this outer for-loop is short-circuited. In an inner for-loop 1716, a function “similar” is called for each pattern in a cluster to determine whether the pattern is sufficiently similar to the symbol image to add the pattern to the list of potentially matching patterns. Again, when the list of potentially matching patterns is filled, this inner for-loop is also short-circuited. FIG. 17 provides an estimate for the computational complexity of this third implementation of the routine “process” 1720. Because both the outer and inner for-loops 1714 and 1716 are short-circuited when a sufficient number of potentially matching patterns is found, and because the vectors or lists of patterns within each cluster are sorted by frequency of occurrence in the actual document being processed, only a relatively small fraction of the comparisons needed in the second implementation of the routine “process” are needed by the third implementation, as represented by the fraction

1 d 1722.

There is, of course, an initial preprocessing penalty represented by the term “e” 1744. However, as discussed above, the number of symbol images that are processed, N, is generally quite small in comparison to P or P′, for languages such as Chinese, Japanese, and Korean, and therefore the third implementation of the routine “process” provides significantly decreased computational complexity in comparison to either the first or second implementations of the routine “process,” discussed above. More importantly, the third implementation of the routine “process” is guaranteed to look through all of the clusters until some maximum number of potentially matching symbols is found. When the threshold for similarity for clusters is set to a relatively low value and the threshold for similarity for patterns is set relatively high, there is a very high probability that the list of potentially matching symbols returned by the routine “process” will include the actual symbol that best matches the input symbol image.

The above discussion, including the third implementation outlined in FIG. 17, provides a context for describing a particular aspect of this generalized third implementation to which the current document is directed. It should be clearly understood that the above-described implementations are generalized implementations and that any particular implementation of an OCR system may use any of a large number of different possible alternative implementations.

The current document is directed to the control logic and data structures within an OCR system that allows for both clustering of patterns as well as for the above-described preprocessing step in which graphemes within patterns can be sorted by the frequency of occurrence of the graphemes within a text-containing scanned image or set of scanned images. These control logic and data structures are used in a preprocessing/clustering OCR implementation in which a fixed set of parameters is associated with each cluster and used in symbol-image/pattern comparisons with respect to patterns contained in the cluster. The clusters may be used in different local operations or phases of a complex OCR processing task, and the particular parameters used, and the number of parameters used, for symbol-image/pattern comparisons with respect to patterns contained in the cluster may differ in different local operations and phases, and may often differ among different clusters. FIG. 18 illustrates data structures that provide for clustering and preprocessing in one implementation of an OCR system that incorporates the general third implementation of the routine “process,” described above. A first data structure is an array or vector 1802 referred to as “votes.” In a described implementation, the array “votes” includes one element for each of the graphemes for a language. The array “votes” is indexed by integer grapheme codes. In other words, each grapheme is assigned a unique integer identifier, and that unique identifier, or code, for a grapheme serves as an index into the array “votes.” As shown in FIG. 18, the array “votes” may be implemented with n entries, where n is the number of graphemes in the language and the grapheme codes monotonically increase from 0 to n. Of course, the data structure “votes” may be alternatively implemented as a sparse array, when grapheme codes are not monotonically increasing, as a list, or using other types of data structures.

FIG. 18 shows a second data structure 1804 which is an array of instances of the class “parameter.” As with the data structure “votes,” the array “parameters” may be alternatively implemented by various alternative data structures, including lists, sparse arrays, and other data structures. In the currently described implementation, the array “parameters” includes p entries or elements that are indexed by monotonically increasing parameter numbers 0, 1, 2, . . . , p. Each instance of the class “parameter” represents one of the various parameters used to characterize symbol images and patterns, as discussed above.

FIG. 18 additionally shows a cluster data structure 1806 that represents a cluster or set of patterns. The cluster data structure includes an array “clusterParameters” 1808 that represents the parameters used to characterize the patterns within the cluster at a particular point in time as well as to characterize symbol images for comparison with the patterns contained in the cluster. Each element in the array “clusterParameters” contains an index into the array “parameters” 1804. By using indices into the array “parameters” 1804, the particular parameters and the number of parameters used for comparisons can be easily changed or reconfigured, so that the cluster can be efficiently reconfigured for different local operations or phases. The cluster data structure also includes an integer num 1810 that indicates the number of parameter indices contained in the array “clusterParameters.” The cluster data structure additionally contains a double, or floating-point, value, referred to as “cutoff” 1812 that contains a threshold weight for evaluation of patterns, contained in the cluster, with respect to a symbol image. Finally, the cluster data structure 1806 includes a number of pattern data structures 1814-1822. The pattern data structures are discussed below.

FIGS. 19A-H illustrate preprocessing of a symbol image using the data structures discussed above with reference to FIG. 18. FIG. 19A shows the data structure “votes” 1802, discussed above with reference to FIG. 18, and a single pattern data structure 1902 selected from the patterns contained in the cluster data structure 1806, also discussed above with reference to FIG. 18. Each pattern data structure includes a pattern number 1904 and a set of parameter values 1905 computed for the pattern using the parameters referenced by indexes contained in the “clusterParameters” array 1808 within the cluster data structure 1806. As noted above, it is important to remember that symbol images are scaled, rotated, and translated to create normalized symbol images to facilitate parameter-based comparisons between symbol images and patterns. The pattern data structure additionally includes an integer 1906 that indicates the number of indices within the pattern data structure, and then the indicated number of indices 1908. These indices are associated with the different possible weights that can be computed during comparison of a symbol image with a pattern. In one implementation, there may be as many indices within the pattern data structure as there are possible computed weights, with each index comprising an integer index as well as the computed weight associated with the index. Other implementations are possible. When a symbol image is parameterized, and the parameter values for the symbol image compared to the pattern represented by the pattern data structure, a weight is produced. The greater the weight value, the less well the symbol image matches the pattern. This weight is used to select a corresponding index, from the indices, that is used to select a number of graphemes corresponding to the pattern for which to vote, during the preprocessing step. Each pattern data structure includes an integer indicating the number of graphemes corresponding to the pattern 1910 and then one code for each grapheme of the set of graphemes corresponding to the pattern 1912. In many implementations, these grapheme codes are sorted with respect to similarity or closeness to the encompassing pattern, in decreasing similarity order.

FIGS. 19B-H illustrate preprocessing of a single symbol image selected from a text-containing scanned image. In the example of FIGS. 19B-H, the symbol image 1914 represents a character from an Asian language. FIG. 19B also shows the array “parameters” 1804, discussed above with reference to FIG. 18, and a small portion of the clusters data structure 1806 that includes the array “clusterParameters” 1808 and the integer num 1810.

As shown in FIG. 19C, for each of the num parameters, indexes for which are included in the array “clusterParameters” 1808, the index for a parameter 1916 is extracted from the array “clusterParameters” 1808 and used to access an instance of the class “parameter” 1918 within the array “parameters” 1804. A member function “parameterize” of the instance of the class “parameter” 1918 is called to generate a parameter value 1920 that is then stored in a local variable 1922. FIG. 19C illustrates computation of a first parameter value for the symbol image. FIG. 19D shows computation of a second parameter value for the symbol image. When all num instances of the class “parameter” have been invoked to generate num parameter values for the symbol image, a list or array of symbol-image parameter values 1924 is obtained, as shown in FIG. 19E.

Next, as shown in FIG. 19F, the corresponding parameter value precomputed for the pattern represented by the pattern data structure and parameter for the symbol image are subtracted to produce a series of computed values, one for each parameter. For example, as shown in FIG. 19F, the first parameter value 1926 stored in the pattern data structure 1902 and the first parameter value 1922 computed for the symbol image are subtracted to produce an intermediate value 1928. The remaining predetermined parameter values for the pattern 1930-1933 and the remaining parameter values for the symbol image 1934-1938 are similarly subtracted to produce additional intermediate computed values 1940-1944. The absolute values of these intermediate values 1928 and 1940-1944 are summed 1946 to produce the weight 1948 that numerically represents a parameter-based comparison between the symbol image and the pattern represented by the pattern data structure 1902. Again, the greater the value of the computer weight, the less similar the symbol image to the pattern, as the weight is an accumulation of differences between parameter values for the symbol image and pattern.

As shown in FIG. 19G, when the computed weight 1948 is greater than the cutoff value 1812 for the cluster, the preprocessing for the symbol image with respect to the pattern represented by the pattern data structure 1902 is finished 1950. Otherwise, the preprocessing of the symbol image votes for one or more of the graphemes corresponding to the pattern represented by the pattern data structure 1952.

FIG. 19H illustrates the case when the computed weight that represents the comparison of the symbol image with the pattern represented by the pattern data structure is less than or equal to the cutoff value for the cluster. In this case, the computed weight 1948 is used to select an index 1954 from the set of indices 1908. As discussed above, each of the indices 1908 may contain an index and an associated weight, allowing a particular one of the indices 1954 to be selected by the computed weight 1948, from index which an index into the grapheme codes is extracted. This extracted index points 1956 to a particular grapheme code 1958 within the set of grapheme codes 1912 stored within the pattern data structure to represent those graphemes that correspond to the pattern. Then, for all of the grapheme codes beginning with a first grapheme code 1960 and extending to the grapheme code 1958 pointed to by the extracted index 1956, the corresponding element of the data structure “votes” 1802 is incremented, as represented by the arrows emanating from the elements containing grapheme codes between and including elements 1960 and 1958, such as arrow 1962.

Thus, when the computed weight for the comparison of the symbol image to the pattern is less than the cutoff value, then the symbol image is sufficiently similar to the pattern that at least some of the graphemes corresponding to the pattern deserve a vote in the preprocessing step. Those graphemes sufficiently similar to the symbol image are selected based on the computed weight using an index selected from one of the indices 1908 corresponding to the computed weight. Then, elements of the data structure “votes” corresponding to these graphemes are incremented to reflect votes for these graphemes based on preprocessing of the symbol image.

Next, C++-like pseudocode is provided to illustrate the preprocessing of a symbol image with respect to the patterns within a cluster, as illustrated in FIGS. 19A-H. Relatively simple C++-like pseudocode is employed, including fixed-size arrays and simple control structures. Of course, more efficient, but also more complex, implementations may be used in practical OCR systems, including iterators, data structures that implement associative memory, and other such alternative data structures and associated methods.

First, a number of data structures and class declarations are provided:

 1 int votes[NUM_GRAPHEMES];  2 class parameter  3 {  4 virtual double parameterize (symbolImage* s);  5 };  6 parameter Parameters [NUM_PARAMETERS];  7 class pattern  8 {  9 private : 10 int patternNo; 11 double parameters[MAX_PARAMETERS]; 12 int numIndices; 13 int indices[MAX_INDICES]; 14 int numGraphemes; 15 int graphemes[MAX_GRAPHEMES]; 16 public : 17 double getParameter (int i); 18 int getIndex (double w); 19 int getGrapheme (int i); 20 pattern ( ); 21 }; 22 class cluster 23 { 24 private : 25 int num; 26 int clusterParameters[MAX_CLUSTER_PARAMETERS]; 27 double cutoff; 28 int numPatterns; 29 pattern*patterns; 30 public : 31 double getCutoff ( ); 32 int getNum ( ); 33 int getParameter (i); 34 pattern* getPattern (i); 35 int getNumPatterns ( ); 36 cluster ( ); 37 };

The data structure “votes” 1802 is declared on line 1, above. A small portion of a declaration for a class “parameter” is provided on lines 2-5. In the current discussion, the only relevant aspect of the parameter class is that the base class includes a virtual function member “parameterize” that takes, as input, a symbol image and that returns, as output, a floating-point parameter value. Of course, in certain cases, a particular parameter may have only integer values, rather than floating-point values. The data structure “parameters” 1804 is declared on line 6. A portion of a class “pattern” is declared on lines 7-21. The class “pattern” includes private data members “patternNo” (1904 in FIG. 19A), declared on line 10, an array of parameter values “parameters” (1906 in FIG. 19A), declared on line 11, a number of indices “numIndices” (1906 in FIG. 19A), declared on line 12, and a set of indices (1908 in FIG. 19A) of cardinality “numIndices,” declared on line 13, an integer value “numGraphemes” (1910 in FIG. 19A), and a set of grapheme codes “graphemes” (1912 in FIG. 19A), of cardinality “numGraphemes.” The class “pattern” includes the function members “getParameter,” declared on line 17, which returns a parameter value from the set of parameter values “parameters,” the function member “getIndex,” declared on line 18, which returns an index corresponding to a computed weight, and a function member “getGrapheme,” declared on line 19, which returns a grapheme code from the set of grapheme codes “graphemes,” declared on line 15. Finally, the class “cluster” is declared on lines 22-37, representing the cluster data structure 1806 in FIG. 18. The class “cluster” includes private data members num (1810 in FIG. 18), declared on line 25, “clusterParameters” (1808 in FIG. 18), declared on line 26, “cutoff” (1812 in FIG. 18), declared on line 27, an integer indicating the number of patterns within the cluster, “numPatterns,” declared on line 28, and a pointer to the patterns contained within the cluster, “patterns,” declared on line 29. The class “cluster” includes function members to get the cutoff value and number of patterns, “getCutoff” and “getNum,” declared on lines 31 and 32, the function member “getParameter” that retrieves parameter indices from the array “clusterParameters,” declared on line 32, the function member “getPattern” that returns a particular pattern stored within the cluster, declared on line 33, and the function member “getNumPatterns,” declared on line 34, that returns the number of patterns stored within the cluster data structure.

The following pseudocode routine “vote” illustrates implementation of the preprocessing method with respect to a single symbol image and a single cluster:

36 void vote (symbolImage* s, cluster* c) 37 { 38 double params[MAX_PARAMETERS]; 39 int i, j, k, l; 40 double weight, t; 41 pattern* p; 42 43 for (i = 0; i < c → getNum( ); i++) 44 params[i] = Parameters[c → getParameter (i)].parameterize(s); 45 for (j = 0; j < c → getNumPattern( ); j++) 46 { 47 p = c → getPattern(i); 48 weight = 0; 49 for (i = 0; i < c → getNum( ); c++) 50 { 51 t = p → getParameter (i) − params [i]; 52 weight + = (t < 0) ? − t : t; 53 } 54 if (weight > c → getCutoff( )) continue; 55 k = p → getIndex(weight); 56 for (l = 0; l < k; l++) 57 votes[p → getGrapheme(l)]++; 58 } 59 }

The routine “vote” receives, as arguments, a pointer to a symbol image and a pointer to a cluster. Local variables include the array “params” declared on line 38, that stores computed parameter values for the symbol image, iteration integers i, j, k, and l, declared on line 39, floating-point variables “weight” and “t,” used to store a computed weight resulting from a comparison between the input symbol image and a pattern within the cluster, and a pointer p, declared on line 41, that points to a pattern within the input cluster. In the for-loop of lines 43-44, parameter values for all the parameters used by the cluster are computed for the input symbol image and stored in the array “params” (1924 in FIG. 19E). Next, in the outer for-loop of the nested for-loops of lines 45-58, each parameter within the input cluster is considered. On line 46, a pointer to the currently considered pattern is obtained by calling the cluster function member “getPattern.” The local variable “weight” is set to 0, on line 48. Then, in the for-loop of lines 49-53, the weight that represents comparison of the input symbol image to the pattern is computed, as discussed above with reference to FIG. 19F. When the weight is greater than the cutoff value for the cluster, as determined on line 54, the current iteration of the outer for-loop of lines 44-58 is short circuited, since the input symbol image is not sufficiently similar to the currently considered pattern for voting. Otherwise, the local variable k is set to the last index of a grapheme code for voting, on line 55. Then, in the for-loop of lines 56-57, all of the graphemes up to the grapheme with code indexed by k are voted for.

There are many different alternative approaches to the preprocessing step and above-described data structures. For example, rather than a cutoff weight for an entire cluster, cutoff weights for particular patterns may be used, with the cutoff weights included in the pattern data structure. As another example, the indices stored within the pattern may be instances of classes that contain lists of grapheme codes, rather than indexes pointed into an ordered list of grapheme codes, as in the currently described implementation. Many other such alternative implementations are possible. For example, the routine “vote” may receive, as a second argument, a pointer to an array “params” and, in the for-loop of lines 43-44, may compute parameter values only when they have not already been computed while processing the symbol image with respect to other clusters. Different types of weight computations and symbol-image-to-pattern comparisons may be used in alternative implementations. In certain cases, larger-valued weights may indicate greater similarity between a symbol image and a pattern, unlike the above-described weights that increase in value as the similarity between a symbol image and a pattern decreases. In certain OCR systems, real coefficients may be associated with graphemes to allow for fractional votes and votes greater than 1. In certain OCR systems, graphemes, patterns, and/or clusters may be sorted, based on votes accumulated during preprocessing, to facilitate efficient subsequent symbol recognition. In certain implementations, a cluster data structure may include only a number of pattern data structures or references to pattern data structures, with the cutoff and patterns associated with the cluster specified in control logic, rather than stored in the cluster data structure.

Once votes have been collected in the array “votes” for a particular symbol image after preprocessing the symbol image with respect to the patterns contained in a cluster, the votes array can be subsequently processed to return a list of grapheme codes for which votes were received, ordered in descending order by the number of votes received by each grapheme code. The number of votes accumulated for a particular grapheme may be considered to be a computed level of similarity of the grapheme to the symbol image. Alternatively, a different level-of-similarity metric may be computed based on the number of votes accumulated for the grapheme. This ordered list represents the graphemes that are most similar to the symbol image, in descending similarity order. Alternatively, the votes array may be used to accumulate votes generated by preprocessing a symbol image with respect to multiple clusters, after which an ordered list of graphemes most similar to the symbol image may be produced. In other methods, votes may be accumulated for two or more symbol images prior to using the votes to generate a list of grapheme codes. In other words, there are many possible ways for preprocessing methods to accumulate votes in the array “votes” and there are many ways for the accumulated votes to be used to generate various types of results, such as an ordered list of graphemes most similar to a particular symbol image.

Although the present invention has been described in terms of particular embodiments, it is not intended that the invention be limited to these embodiments. Modifications within the spirit of the invention will be apparent to those skilled in the art. For example, any of many different possible implementations of the data structures and methods used for preprocessing according to the generalized third implementation, described above, within an OCR system may be obtained by varying any of many different design and implementation parameters, including data structures, control structures, modular organization, programming language, underlying operating system and hardware, and many other such design and implementation parameters.

It is appreciated that the previous description of the disclosed embodiments is provided to enable any person skilled in the art to make or use the present disclosure. Various modifications to these embodiments will be readily apparent to those skilled in the art, and the generic principles defined herein may be applied to other embodiments without departing from the spirit or scope of the disclosure. Thus, the present disclosure is not intended to be limited to the embodiments shown herein but is to be accorded the widest scope consistent with the principles and novel features disclosed herein.

Claims

1. An optical-symbol-recognition system comprising:

one or more processors;
one of more data-storage devices; and
computer instructions, stored in one or more of the one or more data-storage devices that, when executed by one or more of the one or more processors, control the optical-symbol-recognition system to process a text-containing scanned image by: identifying symbol images from the text-containing scanned image; for each identified symbol image, preprocessing the symbol image to identify graphemes, associated with symbol patterns, that have a computed level of similarity to the symbol image above a threshold level of similarity, and sorting the identified graphemes by computed level of similarity; and using the sorted, identified graphemes to generate symbol encodings for the symbol images that are stored in one or more of the one of more data-storage devices.

2. The optical-symbol-recognition system of claim 1 further including:

a cluster data structure, stored in one or more of the one or more data-storage devices, that represents an aggregation of one or more symbol-pattern data structures stored in one or more of the one or more data-storage devices.

3. The optical-symbol-recognition system of claim 2 wherein the cluster data structure includes one of:

references to the one or more symbol-pattern data structures represented by the cluster data structure; and
the one or more symbol-pattern data structures represented by the cluster data structure.

4. The optical-symbol-recognition system of claim 2 wherein the cluster data structure further includes a cutoff weight, an indication of the number of symbol patterns represented by the cluster, and an indication of the number of parameters and indications of the identities of the parameters currently used to compare symbol images to the symbol patterns represented by the cluster.

5. The optical-symbol-recognition system of claim 2 wherein each symbol-pattern data structure includes:

one or more parameter values for the symbol pattern represented by the symbol-pattern data structure;
indications of one or more graphemes associated with the one or more symbol patterns; and
indices, associated with weight values produced by comparing the symbol pattern represented by the symbol-pattern data structure to a symbol image, that each indexes a grapheme indication within the symbol-pattern data structure.

6. The optical-symbol-recognition system of claim 5 further including a votes data structure that includes a vote value for each grapheme.

7. The optical-symbol-recognition system of claim 6 wherein the computer instructions control the optical-symbol-recognition system to preprocess a symbol image by:

for each symbol pattern represented by the cluster data structure, computing a weight that represents a comparison between the symbol image and the symbol pattern; and when the computed weight indicates more than a threshold similarity between the symbol pattern and the symbol image, selecting indications of one or more graphemes that together comprise indications of a set of graphemes associated with the symbol pattern and computed weight, and adding a value to the vote value in the votes data structure corresponding to each of the graphemes in the set of graphemes.

8. The optical-symbol-recognition system of claim 7 wherein the computer instructions control the optical-symbol-recognition system to compute a weight that represents a comparison between the symbol image and the symbol pattern by:

setting an accumulating weight to 0; and
for each parameter associated with the cluster data structure, computing a parameter value with respect to the symbol image, computing an absolute value of a difference between the computed parameter value and a parameter value computed with respect to the symbol pattern, and adding the computed absolute value to the accumulating weight.

9. The optical-symbol-recognition system of claim 7 wherein selecting indications of one or more graphemes that together comprise indications of a set of graphemes associated with the symbol pattern and computed weight further comprises:

selecting an index of a grapheme indication stored within the symbol-pattern data structure that is associated with the computed weight; and
selecting the grapheme indications stored within the symbol-pattern data structure from a first grapheme indication up to, and including, the grapheme indication that is indexed by the selected index.

10. The optical-symbol-recognition system of claim 7 wherein adding a value to the vote value in the votes data structure corresponding to each of the graphemes in the set of graphemes further comprises one of:

adding 1 to each vote value in the votes data structure corresponding to each of the graphemes in the set of graphemes; and
adding a computed vote value to each vote value in the votes data structure corresponding to each of the graphemes in the set of graphemes.

11. The optical-symbol-recognition system of claim 7 wherein the computed level of similarity of a grapheme to a symbol image is one of:

the number of votes stored in the votes data structure for the grapheme following preprocessing of the symbol image; and
a value computed from the number of votes stored in the votes data structure for the grapheme following preprocessing of the symbol image.

12. A method carried out within an optical-symbol-recognition system comprising one or more processors, one of more data-storage devices, and computer instructions, stored in one or more of the one or more data-storage devices that, when executed by one or more of the one or more processors, control the optical-symbol-recognition system to carry out the method, the method comprising:

identifying symbol images from the text-containing scanned image;
for each identified symbol image, preprocessing the symbol image to identify graphemes, associated with symbol patterns, that have a computed level of similarity to the symbol image above a threshold level of similarity, and sorting the identified graphemes by computed level of similarity; and
using the sorted, identified graphemes to generate symbol encodings for the symbol images that are stored in one or more of the one of more data-storage devices.

13. The method of claim 12 further including:

storing a cluster data structure in one or more of the one or more data-storage devices that represents an aggregation of one or more symbol-pattern data structures stored in one or more of the one or more data-storage devices.

14. The method of claim 12 wherein each symbol-pattern data structure includes:

one or more parameter values for the symbol pattern represented by the symbol-pattern data structure;
indications of one or more graphemes associated with the one or more symbol patterns; and
indices, associated with weight values produced by comparing the symbol pattern represented by the symbol-pattern data structure to a symbol image, that each indexes a grapheme indication within the symbol-pattern data structure.

15. The method of claim 14 further including storing a votes data structure that includes a vote value for each grapheme structure in one or more of the one or more data-storage devices.

16. The method of claim 15 wherein preprocessing the symbol images to identify graphemes associated with symbol patterns that have a level of similarity to one or more of the symbol images above a threshold level of similarity includes:

for each symbol image, for each symbol pattern, computing a weight that represents a comparison between the symbol image and the symbol pattern; and when the computed weight indicates more than a threshold similarity between the symbol pattern and the symbol image, selecting indications of one or more graphemes that together comprise indications of a set of graphemes associated with the symbol pattern and computed weight, and adding a value to the vote value in the votes data structure corresponding to each of the graphemes in the set of graphemes.

17. The method of claim 16 wherein the computer instructions control the optical-symbol-recognition system to compute a weight that represents a comparison between the symbol image and the symbol pattern by:

setting an accumulating weight to 0; and
for each parameter associated with the cluster data structure, computing a parameter value with respect to the symbol image, computing an absolute value of a difference between the computed parameter value and a parameter value computed with respect to the symbol pattern, and adding the computed absolute value to the accumulating weight.

18. The method of claim 16 wherein selecting indications of one or more graphemes that together comprise indications of a set of graphemes associated with the symbol pattern and computed weight further comprises:

selecting an index of a grapheme indication stored within the symbol-pattern data structure that is associated with the computed weight; and
selecting the grapheme indications stored within the symbol-pattern data structure from a first grapheme indication up to, and including, the grapheme indication that is indexed by the selected index.

19. The method of claim 16 wherein the computed level of similarity of a grapheme to a symbol image is one of:

the number of votes stored in the votes data structure for the grapheme following preprocessing of the symbol image; and
a value computed from the number of votes stored in the votes data structure for the grapheme following preprocessing of the symbol image.

20. Computer instructions stored in a physical data-storage device that, when executed by one or more of one or more processors of an optical-symbol-recognition system having the one or more processors and one of more data-storage devices, control the optical-symbol-recognition system to carry out the method, the method comprising:

identifying symbol images from the text-containing scanned image;
for each identified symbol image, preprocessing the symbol image to identify graphemes, associated with symbol patterns, that have a computed level of similarity to the symbol image above a threshold level of similarity, and sorting the identified graphemes by computed level of similarity; and
using the sorted, identified graphemes to generate symbol encodings for the symbol images that are stored in one or more of the one of more data-storage devices.
Patent History
Publication number: 20150213330
Type: Application
Filed: Oct 7, 2014
Publication Date: Jul 30, 2015
Patent Grant number: 9892114
Inventor: Yuri Chulinin (Moscow)
Application Number: 14/508,492
Classifications
International Classification: G06K 9/62 (20060101); G06K 9/82 (20060101); G06F 17/28 (20060101); G06K 9/78 (20060101);